基于多项式拟合的乳腺癌检测在增强光谱乳房x线摄影中的应用

Shaimaa Mostafa, Roaa I. Mubarak, M. El-Adawy, A. F. Ibrahim, Mohamed M. Gomaa, R. Kamal
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引用次数: 2

摘要

本文提出了一种对感兴趣区域(ROI)内像素的多项式拟合技术,以获得一个新的特征集,该特征集可用于区分正常和癌变情况。与以往使用大量特征集的文献相比,本文使用的特征较少,然后使用不同的降维技术,这可能会使系统复杂化,并且需要很大的计算成本。这些特征不需要降维,然后将其应用于两种不同的分类器,k近邻(KNN)和人工神经网络(ANN)。在医院内科医生和放射科医生的帮助下,所提出的技术已应用于“巴合亚乳腺癌早期检测与治疗基金会”的50例真实病例。使用的图像是对比度增强光谱乳房x线照片(CESM),它比传统的乳房x线照片更清晰,对比度更高。使用两种不同的分类器——k近邻(KNN)和人工神经网络(ANN)——将所提出的特征集应用于这些CESM乳房x线照片,分别给出了96%和92%的准确率。
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Breast Cancer Detection Using Polynomial Fitting Applied on Contrast Enhanced Spectral Mammography
This paper presents a polynomial fitting technique on pixels inside the Region Of Interest (ROI) to obtain a new feature set that can be used to differentiate between normal and cancerous cases. In this paper few features have been used if it compared to other previous works that have been used many feature sets, and then used different techniques to reduce the dimensionality, which might complicate the system also require a great computational cost. These few features are used without any need to reduce the dimensionality then it is applied on two different classifiers, the K-nearest neighbor (KNN) and the artificial neural network (ANN). The proposed techniques have been applied on 50 real cases from ‘BAHEYA Foundation for Early Detection & Treatment of Breast Cancer’ with the help of physicians and radiologists in the hospital. The used images are Contrast Enhanced Spectral Mammograms (CESM) that has clearer and more contrast images than the conventional mammograms. Applying the proposed feature set on these CESM mammograms using the two different classifiers-the K-nearest neighbor (KNN) and the artificial neural network (ANN) - give accuracies of 96% and 92% respectively.
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